Automatic Tumor-Stroma Separation in Fluorescence TMAs Enables the Quantitative High-Throughput Analysis of Multiple Cancer Biomarkers
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Bernd Lahrmann | Niels Grabe | Peter Schirmacher | Niels Halama | Hans-Peter Sinn | N. Halama | P. Schirmacher | N. Grabe | B. Lahrmann | H. Sinn | D. Jaeger | Dirk Jaeger
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